Data Mining II - Advanced Topics in Data Mining
News:
Announcement: Course materials for the semester will be distributed over Moodle. Please follow this link to see the content.
Timetable
Day | Time | Frequency | Period | Room | Lecturer | Remarks | Max. participants |
---|---|---|---|---|---|---|---|
Vorlesung(V) - Lecture - Dates/Times/Location: | |||||||
Mon. | 09:00 bis 11:00 | weekly |
10.10.2022 to 23.01.2023 | G29-307 (Verwaltung durch FIN) | Spiliopoulou | 40 | |
Übung (Ü) - Exercise - Dates/Times/Location: Group 1 | |||||||
Tue. | 13:00 bis 15:00 | weekly | 11.10.2022 to 24.01.2023 | G29-K058 (30 Pl.) | Unnikrishnan | 20 | |
Übung (Ü) - Exercise - Dates/Times/Location: Group 2 | |||||||
Mon. | 11:00 bis 13:00 | weekly | 10.10.2022 to 23.01.2023 | G22A-216 (40 Pl.) | Jamaludeen | 20 |
Overview (from LSF)
Learning Content | In this course, we discuss advanced Data Mining methods for Data Science: * Dealing with VELOCITY: methods for supervised, semi-supervised and unsupervised learning on data streams * Dealing with VOLATILITY: learning and adaption on dynamic data * Dealing with VOLUME: methods for learning on high-dimensional data * VERACITY: incorporating expert knowledge into the learning process From the applications' perspective, we focus on web applications and on applications from the domain of medical research. |
---|---|
Comments | |
Description | Veranstaltungsbegin ist 9:30 Uhr. |
Literature | Scientific papers (to be announced at the course) |
Remarks | |
Prerequisites | Data Mining (recommended) |
Certificates | |
Target Group | WPF Master DKE WPF Master Inf WPF Master WIF WPF Master CV WPF Master IngInf WPF Master Statistik |
Description | Data Mining II - Advanced Topics in Data Mining |
Lecture
- The lecture and exercises materials are distributed over Moodle. Click here to open the course page on Moodle.
Exercise
- The lecture and exercises materials are distributed over Moodle. Click here to open the course page on Moodle.